首页> 外文期刊>Journal of clinical sleep medicine: JCSM : official publication of the American Academy of Sleep Medicine >A Conditional Inference Tree Model for Predicting Sleep-Related Breathing Disorders in Patients With Chiari Malformation Type 1: Description and External Validation
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A Conditional Inference Tree Model for Predicting Sleep-Related Breathing Disorders in Patients With Chiari Malformation Type 1: Description and External Validation

机译:用于预测Chiari畸形类型1的患者与睡眠有关的呼吸障碍的条件推理树模型:描述和外部验证

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Study Objectives:The aim of this study is to generate and validate supervised machine learning algorithms to detect patients with Chiari malformation (CM) 1 or 1.5 at high risk of the development of sleep-related breathing disorders (SRBD) using clinical and neuroradiological parameters.Methods:We prospectively included two independent datasets. A training dataset (n = 90) was used to obtain the best model, whereas a second dataset was used to validate it (n = 74). In both cohorts, the same clinical, neuroradiological, and sleep studies were carried out. We used two supervised machine learning approaches, multiple logistic regression (MLR) and the unbiased recursive partitioning technique conditional inference tree (URP-CTREE), to detect patients at high risk of SRBD. We then compared the accuracy, sensitivity, and specificity of the two prediction models.Results:Age (odds ratio [OR] 1.1 95% confidence interval [CI] 1.051.17), sex (OR 0.19 95% CI 0.050.67), CM type (OR 4.36 95% CI 1.1418.5), and clivus length (OR 1.14 95% CI 1.011.31) were the significant predictor variables for a respiratory disturbance index (RDI) cutoff that was 10 events/h using MLR. The URP-CTREE model predicted that patients with CM-1 who were age 52 years or older and males with CM-1 who were older than 29 years had a high risk of SRBD. The accuracy of predicting patients with an RDI 10 events/h was similar in the two cohorts but in the URP-CTREE model, specificity was significantly greater when compared to MLR in both study groups.Conclusions:Both MLR and URP-CTREE predictive models are useful for the diagnosis of SRBD in patients with CM. However, URP-CTREE is easier to apply and interpret in clinical practice.
机译:研究目的:本研究的目的是生成和验证有监督的机器学习算法,以使用临床和神经放射学参数检测患有高危睡眠相关呼吸障碍(SRBD)的Chiari畸形(CM)1或1.5的患者。方法:我们前瞻性地包括了两个独立的数据集。训练数据集(n = 90)用于获得最佳模型,而第二个数据集用于对其进行验证(n = 74)。在这两个队列中,进行了相同的临床,神经放射学和睡眠研究。我们使用两种监督的机器学习方法,即多元逻辑回归(MLR)和无偏递归划分技术条件推理树(URP-CTREE),来检测SRBD高危患者。然后,我们比较了两种预测模型的准确性,敏感性和特异性。结果:年龄(赔率[OR] 1.1 95%置信区间[CI] 1.051.17),性别(OR 0.19 95%CI 0.050.67), CM类型(OR 4.36 95%CI 1.1418.5)和cl骨长度(OR 1.14 95%CI 1.011.31)是使用MLR得出的呼吸障碍指数(RDI)临界值为10事件/小时的重要预测变量。 URP-CTREE模型预测,年龄在52岁或以上的CM-1患者和年龄在29岁以上的CM-1男性患有SRBD的风险较高。在两个队列中,预测RDI 10事件/小时患者的准确性相似,但在URP-CTREE模型中,与两个研究组的MLR相比,特异性明显更高。结论:MLR和URP-CTREE预测模型均是对于CM患者SRBD的诊断非常有用。但是,URP-CTREE在临床实践中更易于应用和解释。

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